# Remove points which contains pixels fewer than (N)

I tried almost all filters in `PIL`, but failed. Is there any function in numpy of scipy to remove the noise? Like Bwareaopen() in Matlab()?

e.g:

PS: If there is a way to fill the letters into black, I will be grateful

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I don't think this is what you want, but this works (uses Opencv (which uses Numpy)):

``````import cv2

fname = 'Myimage.jpg'
# blur image
im = cv2.blur(im,(4,4))
# apply a threshold
im = cv2.threshold(im, 175 , 250, cv2.THRESH_BINARY)
im = im[1]
# show image
cv2.imshow('',im)
cv2.waitKey(0)
``````

Output ( image in a window ):

You can save the image using `cv2.imwrite`

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This is exactly what i need!!! –  Wilbeibi Mar 19 '13 at 12:15
+1 for the demonstration, but it seems strange to use openCV for this; OP asked for numpy/scipy, and blurring and thresholding are well within the capabilities of these libraries. –  Junuxx Mar 19 '13 at 15:32
@Junuxx I know, but originally even I said that, but he seems to be OK with it... Also, may I add that link into my answer?? –  Schoolboy Mar 19 '13 at 15:34
opencv is ok, numpy/scipy would be better. Thank you again –  Wilbeibi Mar 20 '13 at 1:23

Numpy/Scipy solution: `scipy.ndimage.morphology.binary_opening`. More powerful solution: use scikits-image.

``````from skimage import morphology
cleaned = morphology.remove_small_objects(YOUR_IMAGE, min_size=64, connectivity=2)
``````
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Numpy/Scipy can do morphological operations just as well as Matlab can.

See scipy.ndimage.morphology, containing, among other things, `binary_opening()`, the equivalent of Matlab's `bwareaopen()`.

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Thank you, I will have a try. –  Wilbeibi Mar 20 '13 at 1:24